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Multi-class Stain Separation using Independent Component Analysis

机译:多级污渍分离使用独立分量分析

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Stain separation is the process whereby a full colour histology section image is transformed into a series of single channel images, each corresponding to a given stain's expression. Many algorithms in the field of digital pathology are concerned with the expression of a single stain, thus stain separation is a key preprocessing step in these situations. We present a new versatile method of stain separation. The method uses Independent Component Analysis (ICA) to determine a set of statistically independent vectors, corresponding to the individual stain expressions. In comparison to other popular approaches, such as PCA and NNMF, we found that ICA gives a superior projection of the data with respect to each stain. In addition, we introduce a correction step to improve the initial results provided by the ICA coefficients. Many existing approaches only consider separation of two stains, with primary emphasis on Haematoxylin and Eosin. We show that our method is capable of making a good separation when there are more than two stains present. We also demonstrate our method's ability to achieve good separation on a variety of different stain types.
机译:污渍分离是该过程,其中全彩色组织部分图像被变换成一系列单一信道图像,每个图像相对应对给定的染色表达。数字病理学领域的许多算法涉及单个染色的表达,因此污渍分离是这些情况下的关键预处理步骤。我们提出了一种新的污渍分离方法。该方法使用独立的分量分析(ICA)来确定一组统计上独立的载体,对应于各个染色表达。与其他流行的方法相比,如PCA和NNMF,我们发现ICA对每个污点提供了数据的优越投影。此外,我们介绍了一种校正步骤以改善ICA系数提供的初始结果。许多现有方法仅考虑分离两种污渍,主要重点在血清毒素和曙红上。我们表明,当存在超过两个污渍时,我们的方法能够进行良好的分离。我们还展示了我们的方法在各种不同的染色类型上实现了良好分离的能力。

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